| Literature DB >> 29843692 |
Natalie Terens1, Simona Vecchi2, Anna Maria Bargagli3, Nera Agabiti3, Zuzana Mitrova3, Laura Amato3, Marina Davoli3.
Abstract
BACKGROUND: There is evidence that disparities exist in diabetes prevalence, access to diabetes care, diabetes-related complications, and the quality of diabetes care. A wide range of interventions has been implemented and evaluated to improve diabetes care. We aimed to review trials of quality improvement (QI) interventions aimed to reduce health inequities among people with diabetes in primary care and to explore the extent to which experimental studies addressed and reported equity issues.Entities:
Keywords: Equity; Quality improvement strategies; Systematic review; Type 2 diabetes
Mesh:
Year: 2018 PMID: 29843692 PMCID: PMC5975519 DOI: 10.1186/s12902-018-0260-4
Source DB: PubMed Journal: BMC Endocr Disord ISSN: 1472-6823 Impact factor: 2.763
Fig. 1PRISMA 2009 Flow Diagram. Study selection process
Synthesis of the characteristics of the included studies by level of intervention and PROGRESS factors
| Level of intervention | Patient level | Provider level | Health care systems level | Total QI strategies | ||||
|---|---|---|---|---|---|---|---|---|
| Total of studies | 29 | 3 | 26 | 58 | ||||
| N | % | N | % | N | % | N | % | |
| Sample characteristics | ||||||||
| Age | 55.13 | - | 55.37 | - | 53.82 | - | 55.06 | - |
| Sex, female (%) | 64.05 | 58.69 | 57.84 | 60.20 | ||||
| Baseline HgA1c (%; mmol/mol) | 8.88; 74 | 7.0–11.8; 53–105 | 9.53; 81 | 8.1–12.05; 31–109 | 8.51; 70 | 7.6–10.5; 60–91 | 8.88; 74 | 7.0–12.05; 53–109 |
| Progress factors reported at baseline | ||||||||
| Place of residence | 29 | 50 | 3 | 5.2 | 26 | 44.8 | 58 | - |
| Race/ethnicity | 26 | 49.1 | 3 | 5.7 | 24 | 45.3 | 53 | - |
| Occupation | 12 | 54.5 | – | - | 10 | 45.5 | 22 | - |
| Gender/sex | 24 | 46.2 | 3 | 5.8 | 25 | 48.1 | 52 | - |
| Religion | – | - | – | - | – | - | – | - |
| Education | 26 | 57.7 | 1 | 2.2 | 18 | 40.1 | 45 | - |
| Socioeconomic status (SES) | – | - | – | - | – | - | – | - |
| Income | 20 | 62.5 | – | - | 12 | 37.5 | 32 | - |
| Social capital | 10 | 62.5 | - | - | 6 | 37.5 | 16 | - |
| Age | 28 | 50.0 | 3 | 5.4 | 25 | 44.7 | 56 | - |
| Disability | – | - | – | - | – | - | – | - |
| Sexual orientation | – | - | – | - | – | - | – | - |
| Study characteristics | ||||||||
| Year of publication | ||||||||
| 2005–2010 | 11 | 19 | 2 | 3.5 | 11 | 19 | 24 | 41.4 |
| 2011–2016 | 18 | 31 | 1 | 1.7 | 15 | 25.9 | 34 | 58.6 |
| Study location | ||||||||
| North America | 25 | 86.2 | 3 | 100 | 22 | 85 | 47 | |
| UK | 1 | 3.4 | – | - | 1 | 3.8 | 2 | 3.4 |
| Australia | – | – | – | - | 2 | - | 2 | 3.4 |
| Asia | 3 | 10.4 | – | - | 1 | 7.7 | 4 | 6.9 |
| Duration of study (months) | 10 | 3–26 | 4.5 | 0.25–36 | 12 | 6–60 | 8.9 | 0.25–60 |
| Average sample size (range) | 190 (56–526) | 1573 (182–4138) | 290 (65–1665) | 684 (50–4138) | ||||
Fig. 2Risk of bias graph
Fig. 3Risk of bias summary
Evidence synthesis on differential effect analyses by PROGRESS-Plus factors
| Study, country | PROGRESS-factor | Intervention type | Outcome | Method of analysis | Overall intervention effect | Differential effect |
|---|---|---|---|---|---|---|
| Anderson 2010 [ | Spanish speaking only, education level | Patient level | A1c, DBP,SBP, BMI, LDL, diet behavior (BDA); physical activity (RAPA); depression measured Patient Health questionnaire (PHQ-9) | Subroups analysis and interaction analysis | No significant differences between groups for any outcomes |
|
| Anderson-Loftin 2005 [ | Gender | Patient level | A1c, BMI, LDL, weight, dietary fat behaviors assessed by FHQ, physical activity, psychological status | Stratification by gender | A1c | Men vs women |
| Babamoto 2009 [ | Age | Healthcare level | BMI, A1C, medication adherence, diet, physical activity, emergency department admission (ED) | Logistic regression models | Mean A1c | Patients aged≥50 were less likely to have reduced BMI at follow-up |
| Brown, 2011 [ | Gender | Patient level | A1c, FBG, lipids, BP, BMI, diabetes-related knowledge, health behaviors (physical activity, dietary intake, glucose monitoring) | Interaction terms in hierarchical linear and nonlinear models to test for differential impact of treatment by gender | Over time, both the experimental and control groups showed improvements in FBG levels at three and | FBG, BMI: |
| Forjuoh 2014 [ | Race/ethnicity | Patient level | A1C, physical activity, BMI, BP, diet | Interaction terms in multilevel models to test for differential impact of treatment by race/ethnicity | BMI and BP: Modest reductions from baseline to 12 months of follow-up for all four groups. | A1c |
| Gerber 2005 [ | Health literacy | Patient level | A1c, BMI, BP, eye exam, diabetes knowledge, self-efficacy, self-reported medical care, and perceived susceptibility to complications | Stratification by level of health literacy | No significant differences for all outcomes but perceived susceptibility to diabetes complications | Lower literacy group |
| Sixta 2008 [ | age | Healthcare level | A1C, knowledge, beliefs | Stratified analysis by age | A1C, knowledge, beliefs | A1C |
| West 2007 [ | Race/ethnicity | Patient level | A1C, glucose monitoring | The weight patterns over time by race were examined using a two-factor repeated measures ANOVA stratified by treatment | Weight | Weight at 6 months regardless treatment: |
Data are means ± SD; I intervention group, C control group, OR odds ratio, A1c, Glycated hemoglobin; BMI Body Mass Index, LDL low density cholesterol, BP blood pressure, SBP systolic blood pressure, DBP diastolic blood pressure, MD mean difference, FHQ food habit questionnaire, PHQ-9 Patient Health Questionnaire, DSME Diabetes self-management education, DKQ diabetes knowledge questionnaire, HBQ Health Beliefs Questionnaire
amultivariate analysis adjusted for study group, gender, dietary, exercise activity; bunivariate analysis (did not persist after the other covariates were controlled for); ^b = regression coefficient